Decoding HIV Resistance: from Genotype to Therapy
Overview
Authors
Affiliations
Genetic variation in HIV poses a major challenge for prevention and treatment of the AIDS pandemic. Resistance occurs by mutations in the target proteins that lower affinity for the drug or alter the protein dynamics, thereby enabling viral replication in the presence of the drug. Due to the prevalence of drug-resistant strains, monitoring the genotype of the infecting virus is recommended. Computational approaches for predicting resistance from genotype data and guiding therapy are discussed. Many prediction methods rely on rules derived from known resistance-associated mutations, however, statistical or machine learning can improve the classification accuracy and assess unknown mutations. Adding classifiers such as information on the atomic structure of the protein can further enhance the predictions.
Rusic D, Kumric M, Seselja Perisin A, Leskur D, Bukic J, Modun D Microorganisms. 2024; 12(5).
PMID: 38792673 PMC: 11123121. DOI: 10.3390/microorganisms12050842.
Alvarez G, van Pul L, Robert X, Artia Z, van Nuenen A, Long M BMC Pharmacol Toxicol. 2022; 23(1):43.
PMID: 35765101 PMC: 9241302. DOI: 10.1186/s40360-022-00581-7.
Evolution of drug resistance in HIV protease.
Shah D, Freas C, Weber I, Harrison R BMC Bioinformatics. 2020; 21(Suppl 18):497.
PMID: 33375936 PMC: 7772915. DOI: 10.1186/s12859-020-03825-7.
Antiviral therapies: advances and perspectives.
Goncalves B, Barbosa M, Olak A, Belebecha Terezo N, Nishi L, Watanabe M Fundam Clin Pharmacol. 2020; 35(2):305-320.
PMID: 33011993 PMC: 7675511. DOI: 10.1111/fcp.12609.
Encodings and models for antimicrobial peptide classification for multi-resistant pathogens.
Spanig S, Heider D BioData Min. 2019; 12:7.
PMID: 30867681 PMC: 6399931. DOI: 10.1186/s13040-019-0196-x.